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研究生: 邱詩佩
Shih-pei Chiu
論文名稱: 以事件特徵為基礎的階層式新聞偵測系統
Hierarchical News Detection based on Event Feature
指導教授: 徐俊傑
Chun-Chieh Hsu
口試委員: 蕭顯勝
Hsien-Sheng Hsiao
賴源正
Yuan-Cheng Lai
學位類別: 碩士
Master
系所名稱: 管理學院 - 資訊管理系
Department of Information Management
論文出版年: 2005
畢業學年度: 93
語文別: 中文
論文頁數: 88
中文關鍵詞: 事件特徵主題偵測事件偵測新聞偵測文件分群
外文關鍵詞: Event Feature, Topic Detection, Event Detection, News Detection, Document Clustering
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  • 由於資訊科技的進步,電子文件充斥在我們生活的周遭,加上網際網路的蓬勃發展,讓我們可以輕而易舉地獲得所需的資料。然而在浩瀚的資料堆中,要如何快速地獲取正確的資訊即變成一個非常重要的課題。電子新聞是人們獲取生活新知主要的管道之一,雖然電子新聞入口網站亦提供新聞檢索的功能,但是必須在使用者能夠下對正確的關鍵字,才能獲得有興趣的新聞報導。因此,必須要有一個機制,能夠自動將相關主題與事件的新聞報導聚集在一起。
    本研究分析新聞報導的特性,偵測出新聞報導中的事件特徵(Event Feature),以此事件特徵來萃取主題詞彙及事件導向詞彙。本研究為階層式的新聞偵測架構,主題階層是以監督式(Supervised)的學習模式,根據主題詞彙(Topic Term)將相同主題的新聞報導聚集在一起;事件階層是以非監督式(Unsupervised)的學習模式,利用事件導向詞彙與Modified Bisecting K-means分群演算法將相同事件的新聞報導聚集在一起。
    經由實驗發現,以本研究提出的以事件特徵為基礎的新聞偵測系統,在主題階層的新聞偵測最多可提昇約21%的精確率,在事件階層的新聞偵測最多可提昇約22%的效果。


    Since the growth of the information technique, there exist a large amount of electronic documents exist in our life. In addition, the booming development of the internet makes us obtain the information which we need easily. However, how to extract the right information quickly from the vast amount of documents becomes an important issue. Among the information, electronic news is one of the most common ways in which people retrieve the information they need. Although all portal sites provide news retrieval methods, only the users who precisely know the nature of the facts which they are seeking can effectively derive their needed information. Therefore, it is desirable to have a mechanism to automatically locate topically related topics and events in newswire stories.
    In this thesis, we analyze the properties of the news in order to detect the features of the events, which is called “Event Feature”. Event feature is used to identify the topic terms and event-oriented terms. In addition, we propose a hierarchical structure, which includes topic-level and event-level, for detecting the characteristics of the news. In topic-level, we use a supervised learning model based on topic terms to classify the news into pre-defined topic categories. In event-level, we adopt an unsupervised learning model based on event-oriented terms and “Modified Bisecting K-means Clustering Algorithm” to cluster the news.
    We have also conducted many experiments to study the effectiveness of our approach. The results show that in topic-level the precision of detection based on event feature can be raised 21 percent, and in event-level the performance of detection based on event feature can be raised 22 percent.

    中文摘要 I 英文摘要 II 誌謝 III 目錄 IV 圖索引 VII 表索引 IX 第一章、緒論 1 1.1 研究背景 1 1.2 研究目的及方法 2 1.3 論文架構 3 第二章、文獻探討 4 2.1 主題與事件的定義 4 2.2 主題偵測與追蹤 5 2.3 事件偵測的分類 6 2.3.1 回顧偵測 7 2.3.2 線上偵測 9 2.4 事件偵測相關研究文獻 10 2.5 詞彙挑選方法 12 2.6 向量空間模型(Vector Space Model, VSM) 15 2.7 文件分群技術 16 2.7.1 階層式分群演算法 17 2.7.2 分割式分群演算法 18 第三章、以事件特徵為基礎的階層式新聞偵測 21 3.1 系統架構 21 3.2 資料前處理程序 22 3.2.1中文斷詞 (Segmentation) 23 3.2.2人名辨識 (Name-Entities Identification) 23 3.2.3複合詞偵測 (Compound-Words Detection) 25 3.2.4 詞性過濾 (Filtering the Part of Speech) 26 3.2.5 詞彙頻率及文件頻率過濾 (TF and DF filtering) 26 3.2.6 事件特徵偵測 (Event Feature Detection) 27 3.3 階層式的新聞偵測架構 30 3.4 主題階層之新聞偵測 (Topic-Level News Detection) 31 3.4.1建立主題階層的文件向量空間 32 3.4.2 萃取代表每一主題之主題詞彙 33 3.4.3 主題階層之新聞偵測演算法 35 3.5 事件階層之新聞偵測 (Event-Level News Detection) 36 3.5.1建立事件階層的文件向量空間 37 3.5.2 過濾主題關聯的共同詞彙 38 3.5.3 過濾特殊化詞彙以挑選文件之事件導向詞彙 41 3.5.4 挑選文件之事件導向詞彙例子 42 3.5.5 事件階層之新聞偵測演算法 — Modified bisecting k-means 43 第四章、實驗結果與分析 49 4.1 資料集與實驗評估方法 49 4.1.1 資料集 49 4.1.2 實驗評估方法 50 4.2人名辨識之效果 52 4.3 主題階層之新聞偵測結果分析 52 4.3.1 主題詞彙是否以事件特徵為基礎對於主題階層新聞偵測之影響 53 4.3.2 主題詞彙數(參數m)對於主題階層新聞偵測之影響 55 4.3.3 挑選文件向量元素之條件對於主題階層新聞偵測之影響 57 4.3.4 主題類別對於主題階層新聞偵測之影響 61 4.3.5 主題類別數對於主題階層新聞偵測之影響 63 4.4 事件階層之新聞偵測結果分析 65 4.4.1 過濾共同性詞彙之參數  對事件階層新聞偵測的影響 66 4.4.2 過濾特殊化詞彙之參數  對事件階層新聞偵測的影響 70 4.4.3 擷取事件導向詞彙是否以事件特徵為基礎對事件階層新聞偵測的影響 72 第五章、結論與未來研究 77 5.1 結論 77 5.2 未來研究方向 78 參考文獻 80 附錄一、階層式新聞偵測系統展示 84

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